BG Staffing Price on November 7, 2019 Breakdown

BGSF -- USA Stock  

Fiscal Quarter End: December 31, 2019  

We consider BG Staffing somewhat reliable. BG Staffing retains Efficiency (Sharpe Ratio) of 0.0737 which signifies that the organization had 0.0737% of return per unit of price deviation over the last 3 months. Our way in which we are foreseeing volatility of a stock is to use all available market data together with stock specific technical indicators that cannot be diversified away. We have found twenty-one technical indicators for BG Staffing which you can use to evaluate future volatility of the firm. Please confirm BG Staffing Standard Deviation of 2.1, Market Risk Adjusted Performance of 0.1025 and Coefficient Of Variation of 1376.11 to double-check if risk estimate we provide are consistent with the epected return of 0.155%.

Date Headline

BG Staffing Headline on November 7, 2019

BG Staffing dividend paid on November 7, 2019

BG Staffing Valuation Near November 7, 2019

 Open High Low Close Volume
  20.49    20.96    20.00    20.35    72,512  
  20.43    21.39    20.14    21.17    71,775  
  20.95    21.22    20.60    21.00    44,014  
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Open Value
November 7, 2019
Closing Value

BG Staffing Trading Date Momentum on November 7, 2019

On November 08 2019 BG Staffing was traded for  21.00  at the closing time. The top price for the day was 21.22  and the lowest listed price was  20.60 . The trading volume for the day was 44 K. The trading history from November 8, 2019 was a factor to the next trading day price decrease. The overall trading delta against the next closing price was 0.80% . The overall trading delta against the current closing price is 0.71% .

BG Staffing Fundamentals Correlations and Trends

Price Boundaries

BG Staffing Period Price Range

November 7, 2019

BG Staffing December 9, 2019 Market Strength

BG Staffing Technical and Predictive Indicators

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